LIBRISTO
LIBROAMANTO
verplicht
Word lid van een gemeenschap van boekenliefhebbers van over de hele wereld en krijg een heleboel voordelen. Gratis account aanmaken
0
Gratis bezorging met Zásilkovna boven 59.99 €
DPD koerier 5.49 DHL koeriersdienst 5.49 GLS koerier 4.99 DPD-punt 3.99

Gratis verzending vanaf 59,99 euro.

Data-Intensive Systems Quickstart

The Practical Basics of Storage, Streams, and Scaling (Concept Maps + Diagrams + Design Checklists)

Taal EngelsEngels
Boek Gebonden (paperback)
Boek Data-Intensive Systems Quickstart Vincent Barrton
Libristo-code: 51946608
Uitgeverij Independently published, april 2026
Mastering data-intensive systems requires more than traditional programming skills or a focus on har... Volledige beschrijving
? points 34 b TOP TOP Nieuw Nieuw
13.94
In extern magazijn Wordt binnen 9-15 dagen verzonden

Retourneren binnen 30 dagen


Klanten kochten ook


TOP
Python Data Science Chaolemen Borjigin / Boek Gebonden (harde band)
common.buy 80.53
TOP
Data Warehouse Systems Alejandro Vaisman / Boek Gebonden (paperback)
common.buy 46.27
TOP
Artificial Intelligence with Power BI Mary-Jo Diepeveen / Boek Gebonden (paperback)
common.buy 49.61
TOP
Expert Data Modeling with Power BI - Second Edition Soheil Bakhshi / Boek Gebonden (paperback)
common.buy 58.10

Mastering data-intensive systems requires more than traditional programming skills or a focus on hardware. The velocity and variety of modern data create unique design demands that must be addressed from the ground up.


This guide approaches these challenges by equipping you with the fundamental knowledge and practical tools needed to make sharp architectural decisions in contemporary, data-driven environments.

The core of any data-intensive system is built upon a series of foundational choices. The approach you take to storage, streaming, and scalability shapes the flexibility, reliability, and future growth potential of your applications. These pillars aren't just technical categories; they represent the everyday decisions that determine whether systems will gracefully accommodate surging user demand or collapse under unanticipated stress.

The modern landscape is defined by explosive data growth. Applications today generate, receive, and process data from an expanding array of sources, often in real time. Alongside the data deluge, reliability expectations have tightened. Users, teams, and regulators expect uninterrupted service and precise outcomes, regardless of scale. Systems that cannot handle data influx or recover quickly from errors risk downtime, data loss, or even organizational setbacks. This means system failures and capacity shortfalls are no longer minor inconveniences; they can represent significant business risk.

To meet these demands, you need a systematic approach to system planning. This guide provides actionable visual tools and decision checklists aimed at identifying and addressing essential design points before performance bottlenecks and outages occur. Visual concept maps break down complex relationships among storage types and streaming mechanisms, giving clarity at every planning stage. Checklists flag critical requirements and edge conditions, helping catch potential flaws early. Failure pattern tables highlight common pitfalls, making diagnostic work more effective when things go wrong.

This guide focuses intentionally on core architecture and design fundamentals. It does not cover deep algorithmic tutorials, industry-specific compliance standards, or application-layer user guidance. Instead, each chapter delivers clear, usable frameworks suitable across a broad range of domains and systems. By maintaining this scope, the guide ensures that every visual, checklist, and diagram remains general, practical, and widely applicable.

In this guide, you will discover:

  • Definitions and distinctions among functional storage categories, reviewing where block, file, and object storage each excel.
  • Operating principles for streaming data flows, including real-time pipeline mechanics, buffering, and event management.
  • Proven approaches to system scaling, with frameworks for vertical and horizontal growth and clear diagrams illustrating partitioning and replication.
  • Visual concept maps that tie together architecture choices, making system relationships easy to understand.
  • Decision checklists for evaluating durability, consistency, throughput, and scaling capacity at critical design milestones.
  • Failure pattern tables and comparative diagrams to quickly identify and address common bottlenecks or design missteps.
  • Diagnostic templates and reference charts for live evaluation and troubleshooting, so you can adapt strategies as data volumes increase.
  • Explanations of common bottlenecks and clear guides to preventing the most frequent system slowdowns and breakdowns.

Actrice & Polyglot
EWA KASP voor
Video afspelen
Ewa Kasp
Libristo heeft de grootste selectie boeken in vreemde talen. Daarom koop ik mijn boeken hier.

Informatie over het boek

Volledige naam Data-Intensive Systems Quickstart
Taal Engels
Bindwijze Boek - Gebonden (paperback)
Datum van uitgifte 2026
Aantal pagina's 122
EAN 9798255987948
Libristo-code 51946608
Gewicht 175
Afmetingen 152 x 229 x 7
Geef dit boek vandaag nog cadeau
Dat gaat heel eenvoudig
1 Voeg het boek toe aan je winkelwagentje en selecteer Als cadeau bezorgen 2 Je krijgt van ons per omgaand een voucher 3 Het boek wordt bezorgd op het adres van de ontvanger

Dit vind je misschien ook interessant


Monitoring and Securing Virtualized Networks and Services Anna Sperotto / Boek Gebonden (paperback)
common.buy 49.51
Pro DAX and Data Modeling in Power BI Adam Aspin / Boek Gebonden (paperback)
common.buy 60.52
TOP
The Norton Anthology of English Literature Stephen Greenblatt / Boek Gebonden (harde band)
common.buy 68.50

Inloggen

Log in op je account. Heb je nog geen Libristo-account? Maak nu een account aan!

 
verplicht
verplicht

Heb je geen account? Profiteer van de voordelen van een Libristo-account!

Met een Libristo-account heb je alles onder controle.

Een Libristo-account aanmaken